Litcius/Paper detail

Gaussianity and the Kalman Filter: A Simple Yet Complicated Relationship

Jeffrey Uhlmann, Simon Julier

2022Journal de Ciencia e Ingeniería23 citationsDOIOpen Access PDF

Abstract

One of the most common misconceptions made about the Kalman filter when applied to linear systems is that it requires an assumption that all error and noise processes are Gaussian. This misconception has frequently led to the Kalman filter being dismissed in favor of complicated and/or purely heuristic approaches that are supposedly ``more general'' in that they can be applied to problems involving non-Gaussian noise. The fact is that the Kalman filter provides rigorous and optimal performance guarantees that do not rely on any distribution assumptions beyond mean and error covariance information. These guarantees even apply to use of the Kalman update formula when applied with nonlinear models, as long as its other required assumptions are satisfied. Here we discuss misconceptions about its generality that are often found and reinforced in the literature, especially outside the traditional fields of estimation and control.

Topics & Concepts

Kalman filterExtended Kalman filterInvariant extended Kalman filterComputer scienceGaussianEnsemble Kalman filterFast Kalman filterGeneralityHeuristicCovarianceNoise (video)Simple (philosophy)MathematicsControl theory (sociology)AlgorithmArtificial intelligenceStatisticsControl (management)PhysicsPsychologyImage (mathematics)Quantum mechanicsPhilosophyPsychotherapistEpistemologyTarget Tracking and Data Fusion in Sensor NetworksStatistical and numerical algorithmsBayesian Modeling and Causal Inference